ALEN: A Dual-Approach for Uniform and Non-Uniform Low-Light Image Enhancement
Ezequiel Perez-Zarate, Oscar Ramos-Soto, Chunxiao Liu, Diego Oliva, Marco Perez-Cisneros

TL;DR
ALEN introduces a dual-approach network that adaptively enhances low-light images by classifying illumination conditions and applying targeted adjustments, improving image quality and aiding high-level vision tasks.
Contribution
The paper presents ALEN, a novel dual-approach network that adaptively enhances low-light images using classification and estimation modules, outperforming existing methods.
Findings
Superior quantitative performance on low-light datasets
Enhanced visual quality of low-light images
Improved high-level vision task accuracy
Abstract
Low-light image enhancement is an important task in computer vision, essential for improving the visibility and quality of images captured in non-optimal lighting conditions. Inadequate illumination can lead to significant information loss and poor image quality, impacting various applications such as surveillance. photography, or even autonomous driving. In this regard, automated methods have been developed to automatically adjust illumination in the image for a better visual perception. Current enhancement techniques often use specific datasets to enhance low-light images, but still present challenges when adapting to diverse real-world conditions, where illumination degradation may be localized to specific regions. To address this challenge, the Adaptive Light Enhancement Network (ALEN) is introduced, whose main approach is the use of a classification mechanism to determine whether…
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Taxonomy
TopicsImage Enhancement Techniques · Advanced Image Fusion Techniques · Optical Coherence Tomography Applications
MethodsAttention Is All You Need · Adam · Dropout · Position-Wise Feed-Forward Layer · Softmax · Dense Connections · Byte Pair Encoding · Linear Layer · Multi-Head Attention · Label Smoothing
